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首页> 外文期刊>Harmful Algae >Evaluating the portability of satellite derived chlorophyll-α algorithms for temperate inland lakes using airborne hyperspectral imagery and dense surface observations
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Evaluating the portability of satellite derived chlorophyll-α algorithms for temperate inland lakes using airborne hyperspectral imagery and dense surface observations

机译:利用机载高光谱图像和密集表面观测评估温带内陆湖泊卫星衍生叶绿素-α算法的便携性

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摘要

This study evaluated the performances of twenty-nine algorithms that use satellite-based spectral imager data to derive estimates of chlorophyll-a concentrations that, in turn, can be used as an indicator of the general status of algal cell densities and the potential for a harmful algal bloom (HAB). The performance assessment was based on making relative comparisons between two temperate inland lakes: Harsha Lake (7.99 km(2)) in Southwest Ohio and Taylorsville Lake (11.88 km(2)) in central Kentucky. Of interest was identifying algorithm-imager combinations that had high correlation with coincident chlorophyll-a surface observations for both lakes, as this suggests portability for regional HAB monitoring. The spectral data utilized to estimate surface water chlorophyll-a concentrations were derived from the airborne Compact Airborne Spectral Imager (CASI) 1500 hyperspectral imager, that was then used to derive synthetic versions of currently operational satellite-based imagers using spatial resampling and spectral binning. The synthetic data mimics the configurations of spectral imagers on current satellites in earth's orbit including, WorldView-2/3, Sentinel-2, Landsat-8, Moderate-resolution Imaging Spectroradiometer (MODIS), and Medium Resolution Imaging Spectrometer (MERIS). High correlations were found between the direct measurement and the imagery-estimated chlorophyll-a concentrations at both lakes. The results determined that eleven out of the twenty-nine algorithms were considered portable, with r(2) values greater than 0.5 for both lakes. Even though the two lakes are different in terms of background water quality, size and shape, with Taylorsville being generally less impaired, larger, but much narrower throughout, the results support the portability of utilizing a suite of certain algorithms across multiple sensors to detect potential algal blooms through the use of chlorophyll-a as a proxy. Furthermore, the strong performance of the Sentinel-2 algorithms is exceptionally promising, due to the recent launch of the second satellite in the constellation, which will provide higher temporal resolution for temperate inland water bodies. Additionally, scripts were written for the open-source statistical software R that automate much of the spectral data processing steps. This allows for the simultaneous consideration of numerous algorithms across multiple imagers over an expedited time frame for the near real-time monitoring required for detecting algal blooms and mitigating their adverse impacts.
机译:这项研究评估了29种算法的性能,这些算法使用基于卫星的光谱成像器数据得出叶绿素a浓度的估算值,这些估算值反过来可以用作藻类细胞密度的一般状况以及潜在的藻类密度的指标。有害藻华(HAB)。性能评估基于对两个温带内陆湖泊进行的相对比较:俄亥俄州西南部的Harsha湖(7.99 km(2))和肯塔基州中部的Taylorsville湖(11.88 km(2))。感兴趣的是确定与两个湖泊的叶绿素-a表面观测值高度相关的算法-成像器组合,因为这表明可用于区域HAB监测。用于估算地表水叶绿素a浓度的光谱数据来自机载紧凑型机载光谱成像仪(CASI)1500高光谱成像仪,然后使用空间重采样和光谱分箱来得出当前运行的基于卫星的成像仪的合成版本。合成数据模拟地球轨道上当前卫星上的光谱成像仪的配置,包括WorldView-2 / 3,Sentinel-2,Landsat-8,中分辨率成像光谱仪(MODIS)和中分辨率成像光谱仪(MERIS)。在两个湖泊的直接测量值与图像估计的叶绿素a浓度之间发现高度相关。结果确定,在29个算法中,有11个被认为是可移植的,两个湖泊的r(2)值均大于0.5。即使两个湖泊的背景水质,大小和形状有所不同,泰勒斯维尔通常受到的损害较小,较大,但总体上要狭窄得多,结果仍支持在多个传感器上利用一套特定算法来检测潜在潜力的便携性藻类通过使用叶绿素-a代替而开花。此外,由于最近在该星座发射了第二颗卫星,因此Sentinel-2算法的强大性能极有希望,因为它将为温带内陆水体提供更高的时间分辨率。此外,还为开源统计软件R编写了脚本,该脚本可自动执行许多光谱数据处理步骤。这允许在加速的时间范围内同时考虑跨多个成像器的众多算法,以进行检测藻华并减轻其不利影响所需的近实时监控。

著录项

  • 来源
    《Harmful Algae》 |2018年第6期|35-46|共12页
  • 作者单位

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    US EPA, Cincinnati, OH 45268 USA;

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    Univ Cincinnati, Dept Geog & GIS, Cincinnati, OH 45221 USA;

    US Army Corps Engineers, Great Lakes & Ohio River Div, Cincinnati, OH 45202 USA;

    US Army Corps Engineers, Erdc, JALBTCX, Kiln, MS 39556 USA;

    US Army Corps Engineers, Erdc, JALBTCX, Kiln, MS 39556 USA;

    US Army Corps Engineers, Water Qual, Louisville, KY 40202 USA;

    US EPA, Cincinnati, OH 45268 USA;

    Kentucky Dept Environm Protect, Div Water, Frankfort, KY 40601 USA;

    Kentucky Dept Environm Protect, Div Water, Frankfort, KY 40601 USA;

    NOAA, Natl Ocean Serv, Silver Spring, MD USA;

    Texas A&M Kingsville, Dept Phys & Geosci 22, Kingsville, TX 78363 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Chlorophyll-a; Algal bloom; Hyperspectral; Algorithms; Temperate lakes;

    机译:叶绿素a;藻华;高光谱;算法;温带湖泊;

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